76

I have table x:

        website
0   http://www.google.com/
1   http://www.yahoo.com
2   None

I want to replace python None with pandas NaN. I tried:

x.replace(to_replace=None, value=np.nan)

But I got:

TypeError: 'regex' must be a string or a compiled regular expression or a list or dict of strings or regular expressions, you passed a 'bool'

How should I go about it?

118

You can use DataFrame.fillna or Series.fillna which will replace the Python object None, not the string 'None'.

import pandas as pd

For dataframe:

df.fillna(value=pd.np.nan, inplace=True)

For column or series:

df.mycol.fillna(value=pd.np.nan, inplace=True)
  • 2
    If you imported data from an SQL database, you can combine this with the answer below. This converts None (which isn't a string) to NaN. Then you can df['column'].replace(nan, "", inplace=True) if say you wanted None to be empty string. – VISQL Jul 4 '18 at 12:52
  • 1
    This does answer does not work for me; it does not replace None. Max's answer works. – Daniel Oct 11 '18 at 8:14
  • I found this column-specific solution to be the most effective: df['website'].replace(pd.np.nan, 0, inplace=True). It also does not require Numpy to be included, relying on Pandas' inbuilt reference. – CodeMantle Dec 28 '19 at 18:29
14

Here's another option:

df.replace(to_replace=[None], value=np.nan, inplace=True)
  • 3
    Please beware when you run df.replace([None], np.nan, inplace=True), this changed all datetime objects with missing data to object dtypes. So now you may have broken queries unless you change them back to datetime which can be taxing depending on the size of your data. – Doubledown Oct 2 '19 at 16:54
11

The following line replaces None with NaN:

df['column'].replace('None', np.nan, inplace=True)
  • Just double-checked it, it does work for me. Do you get any errors or the 'None' values don't get replaced? – Max Izadi Apr 30 '18 at 0:35
  • NB: this method uses np.nan, which has a float dtype (e.g.: float64), as opposed to pandas's default dtype of object for a nan column. – tehfink Jun 20 '18 at 11:37
  • 3
    Be aware: This replaces strings with the text "None", but not the explicit None values (None as in the constant). – Gregor Müllegger Jul 26 '19 at 8:02
2

If you use df.replace([None], np.nan, inplace=True), this changed all datetime objects with missing data to object dtypes. So now you may have broken queries unless you change them back to datetime which can be taxing depending on the size of your data.

If you want to use this method, you can first identify the object dtype fields in your df and then replace the None:

obj_columns = list(df.select_dtypes(include=['object']).columns.values)
df[obj_columns] = df[obj_columns].replace([None], np.nan)
0
DataFrame['Col_name'].replace("None", np.nan, inplace=True)
  • 1
    Hi and welcome to stackoverflow, and thank you for answering. While this code might answer the question, can you consider adding some explanation for what the problem was you solved, and how you solved it? This will help future readers to understand your answer better and learn from it. – Plutian Feb 7 at 10:16

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